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Machine learning acceleration for nonlinear solvers applied to multiphase porous media flow
- Publication Year :
- 2021
- Publisher :
- Elsevier, 2021.
-
Abstract
- A machine learning approach to accelerate convergence of the nonlinear solver in multiphase flow problems is presented here. The approach dynamically controls an acceleration method based on numerical relaxation. It is demonstrated in a Picard iterative solver but is applicable to other types of nonlinear solvers. The aim of the machine learning acceleration is to reduce the computational cost of the nonlinear solver by adjusting to the complexity/physics of the system. Using dimensionless parameters to train and control the machine learning enables the use of a simple two-dimensional layered reservoir for training, while also exploring a wide range of the parameter space. Hence, the training process is simplified and it does not need to be rerun when the machine learning acceleration is applied to other reservoir models. We show that the method can significantly reduce the number of nonlinear iterations without compromising the simulation results, including models that are considerably more complex than the training case.
- Subjects :
- Mathematics, Interdisciplinary Applications
Technology
Computational Mechanics
Porous media
General Physics and Astronomy
Engineering, Multidisciplinary
2-PHASE FLOW
010103 numerical & computational mathematics
Nonlinear solver
Machine learning
computer.software_genre
Mechanics
01 natural sciences
09 Engineering
Acceleration
Engineering
Convergence (routing)
0101 mathematics
01 Mathematical Sciences
Science & Technology
Numerical relaxation
business.industry
Mechanical Engineering
Applied Mathematics
Multiphase flow
Process (computing)
Relaxation (iterative method)
Solver
BUOYANCY
TRANSPORT
Computer Science Applications
010101 applied mathematics
Range (mathematics)
Nonlinear system
Mechanics of Materials
Multiphase flows
Physical Sciences
SIMULATION
Artificial intelligence
CROSS-FLOW
business
computer
Mathematics
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Accession number :
- edsair.doi.dedup.....5fbebad0713fb18cb97973c03c49e228